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Get Free AccessPregnancy in MS women with relapses in the year before conception increases the risk of long-term disability worsening. Our findings underscore the importance of counselling in MS women facing a pregnancy that should be planned after a period of clinical stability, favouring treatment optimization in patients with recent disease activity.
Emilio Portaccio, Laura Tudisco, Luisa Pastò, Lorenzo Razzolini, Mattia Fonderico, Angelo Bellinvia, Angelo Ghezzi, Pietro Annovazzi, Mauro Zaffaroni, Lucia Moiola, Vittorio Martinelli, Clara Grazia Chisari, Francesco Patti, Gianluigi Mancardi, Carlo Pozzilli, Laura De Giglio, Rocco Totaro, Alessandra Lugaresi, V. Di Tommaso, Damiano Paolicelli, Eleonora Cocco, Maria Giovanna Marrosu, Giancarlo Comi, Massimo Filippi, María Trojano, Maria Pia Amato, Clara Guaschino, Alessandra Protti, C. Spreafico, Raffaella Marazzi, Paola Cavalla, Roberto Bergamaschi, Claudio Solaro, Luisa Caniatti, Maria Rosaria Tola, Franco Granella, Paolo Immovilli, Pasquale Annunziata, Katrin Plewnia, M. Bartolozzi, Leonello Guidi, Monica Mazzoni, Giovanna De Luca, Luigina Musu, Salvatore Lo Fermo (2021). Pregnancy in multiple sclerosis women with relapses in the year before conception increases the risk of long-term disability worsening. , 28(3), DOI: https://doi.org/10.1177/13524585211023365.
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Type
Article
Year
2021
Authors
45
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1177/13524585211023365
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